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17 Exploring artificial intelligence techniques for enhanced sentiment analysis through data mining

  • M. V. Jagannatha Reddy , J. Somasekar , Kaushalya Thopate und Sanjeevkumar Angadi
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Abstract

Sentiment analysis is a subset of data mining that is used to locate, collect, and examine people’s opinions. It makes it possible for data mining tools to comprehend peoples’ feelings and ideas more fully. Natural language processing is one of the most used and established methods used for sentiment analysis tasks. This technique is mainly based on rules, principles, and algorithms which aid in understanding the text making it easier to segment and extract meaningful data. However, this technique is becoming obsolete due to the sheer volume and complexity of data present these days.

Abstract

Sentiment analysis is a subset of data mining that is used to locate, collect, and examine people’s opinions. It makes it possible for data mining tools to comprehend peoples’ feelings and ideas more fully. Natural language processing is one of the most used and established methods used for sentiment analysis tasks. This technique is mainly based on rules, principles, and algorithms which aid in understanding the text making it easier to segment and extract meaningful data. However, this technique is becoming obsolete due to the sheer volume and complexity of data present these days.

Kapitel in diesem Buch

  1. Frontmatter I
  2. Preface V
  3. Contents VII
  4. List of authors IX
  5. About the editors XIII
  6. 1 Introduction to artificial intelligence 1
  7. 2 AI technologies, tools, and industrial use cases 21
  8. 3 Classification and regression algorithms 53
  9. 4 Clustering and association algorithm 87
  10. 5 Reinforcement learning 109
  11. 6 Evaluation of AI model performance 125
  12. 7 Methods of cross-validation and bootstrapping 145
  13. 8 Meta-learning through ensemble approach: bagging, boosting, and random forest strategies 167
  14. 9 AI: issues, concerns, and ethical considerations 189
  15. 10 The future with AI and AI in action 213
  16. 11 A survey of AI in industry: from basic concepts to industrial and business applications 233
  17. 12 The intelligent implications of artificial intelligence-driven decision-making in business management 251
  18. 13 An innovative analysis of AI-powered automation techniques for business management 269
  19. 14 The smart and secured AI-powered strategies for optimizing processes in multi-vendor business applications 287
  20. 15 Utilizing AI technologies to enhance e-commerce business operations 309
  21. 16 Exploring the potential of artificial intelligence in wireless sensor networks 331
  22. 17 Exploring artificial intelligence techniques for enhanced sentiment analysis through data mining 345
  23. 18 Exploring the potential of artificial intelligence for automated sentiment 361
  24. 19 A novel blockchain-based artificial intelligence application for healthcare automation 373
  25. 20 Enhancing industrial efficiency with AI-enabled blockchain-based solutions 387
  26. Index 401
Heruntergeladen am 3.12.2025 von https://www.degruyterbrill.com/document/doi/10.1515/9783111323749-017/html?lang=de
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